dc.date.accessioned2016-12-27T21:47:53Z
dc.date.accessioned2018-06-13T23:03:04Z
dc.date.available2016-12-27T21:47:53Z
dc.date.available2018-06-13T23:03:04Z
dc.date.created2016-12-27T21:47:53Z
dc.date.issued2013
dc.identifier978-1-4419-9864-4
dc.identifier978-1-4419-9862-0
dc.identifier978-1-4419-9863-7
dc.identifierhttp://hdl.handle.net/10533/164754
dc.identifier1110400
dc.identifier.urihttp://repositorioslatinoamericanos.uchile.cl/handle/2250/1543556
dc.description.abstractReceiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands. Receiving Operating Characteristic (ROC) curves are bidimensional graphs commonly used to evaluate and compare the performance of classifiers. ROC plots nicely show the sensitivity/specificity trade-off of a classifier for all possible classification thresholds, thus allowing the ranking and selection of classifiers according to specific user needs that often are associated with differential error costs and accuracy demands.
dc.languageeng
dc.publisherSPRINGER
dc.relationhttp://link.springer.com/referencework/10.1007/978-1-4419-9863-7/page/1
dc.relation10.1007/978-1-4419-9863-7
dc.relationinfo:eu-repo/grantAgreement/Fondecyt/1110400
dc.relationinfo:eu-repo/semantics/dataset/hdl.handle.net/10533/93479
dc.relationinstname: Conicyt
dc.relationreponame: Repositorio Digital RI2.0
dc.relationinstname: Conicyt
dc.relationreponame: Repositorio Digital RI 2.0
dc.rightsinfo:eu-repo/semantics/openAccess
dc.titleRECEIVER OPERATING CHARACTERISTIC (ROC) CURVE
dc.typeCapitulo de libro


Este ítem pertenece a la siguiente institución